Zero-shot segmentation of spinal vertebrae with metastatic lesions: an analysis of Meta's Segment Anything Model 2 and factors affecting learning free segmentation.

Journal: Neurosurgical focus
Published Date:

Abstract

OBJECTIVE: Accurate vertebral segmentation is an important step in imaging analysis pipelines for diagnosis and subsequent treatment of spinal metastases. Segmenting these metastases is especially challenging given their radiological heterogeneity. Conventional approaches for segmenting vertebrae have included manual review or deep learning; however, manual review is time-intensive with interrater reliability issues, while deep learning requires large datasets to build. The rise of generative AI, notably tools such as Meta's Segment Anything Model 2 (SAM 2), holds promise in its ability to rapidly generate segmentations of any image without pretraining (zero-shot). The authors of this study aimed to assess the ability of SAM 2 to segment vertebrae with metastases.

Authors

  • Rushmin Khazanchi
    Department of Orthopaedic Surgery, Northwestern University Feinberg School of Medicine, Chicago, IL.
  • Sachin Govind
  • Rishi Jain
    Novartis BioMedical Research (NBR), Cambridge, MA, USA.
  • Rebecca Du
  • Nader S Dahdaleh
    Northwestern University Feinberg School of Medicine, Department of Neurological Surgery, 676 N. St. Clair Street, Suite 2210, Chicago, IL, 60611, USA. Electronic address: nader.dahdaleh@northwestern.edu.
  • Christopher S Ahuja
  • Najib El Tecle